Deep Learning Enables Individual Xenograft Cell Classification in Histological Images by Analysis of Contextual Features.

IF 3 4区 医学 Q2 ENDOCRINOLOGY & METABOLISM
Quentin Juppet, Fabio De Martino, Elodie Marcandalli, Martin Weigert, Olivier Burri, Michael Unser, Cathrin Brisken, Daniel Sage
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引用次数: 1

Abstract

Patient-Derived Xenografts (PDXs) are the preclinical models which best recapitulate inter- and intra-patient complexity of human breast malignancies, and are also emerging as useful tools to study the normal breast epithelium. However, data analysis generated with such models is often confounded by the presence of host cells and can give rise to data misinterpretation. For instance, it is important to discriminate between xenografted and host cells in histological sections prior to performing immunostainings. We developed Single Cell Classifier (SCC), a data-driven deep learning-based computational tool that provides an innovative approach for automated cell species discrimination based on a multi-step process entailing nuclei segmentation and single cell classification. We show that human and murine cell contextual features, more than cell-intrinsic ones, can be exploited to discriminate between cell species in both normal and malignant tissues, yielding up to 96% classification accuracy. SCC will facilitate the interpretation of H&E- and DAPI-stained histological sections of xenografted human-in-mouse tissues and it is open to new in-house built models for further applications. SCC is released as an open-source plugin in ImageJ/Fiji available at the following link: https://github.com/Biomedical-Imaging-Group/SingleCellClassifier .

Abstract Image

Abstract Image

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通过分析上下文特征,深度学习使组织学图像中的单个异种移植物细胞分类成为可能。
患者来源的异种移植物(PDXs)是最能概括人类乳腺恶性肿瘤患者间和患者内部复杂性的临床前模型,也是研究正常乳腺上皮的有用工具。然而,用这种模型生成的数据分析常常因宿主细胞的存在而混淆,并可能导致数据误解。例如,在进行免疫染色之前,在组织学切片中区分异种移植细胞和宿主细胞是很重要的。我们开发了单细胞分类器(SCC),这是一种基于数据驱动的深度学习的计算工具,它提供了一种基于细胞核分割和单细胞分类的多步骤过程的自动细胞种类识别的创新方法。我们表明,人类和小鼠细胞的背景特征,而不是细胞的内在特征,可以用来区分正常和恶性组织中的细胞种类,产生高达96%的分类准确率。SCC将有助于解释H&E和dapi染色的异种移植人鼠组织的组织学切片,并对新的内部构建模型开放,以进一步应用。SCC作为ImageJ/Fiji的开源插件发布,可从以下链接获得:https://github.com/Biomedical-Imaging-Group/SingleCellClassifier。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Mammary Gland Biology and Neoplasia
Journal of Mammary Gland Biology and Neoplasia 医学-内分泌学与代谢
CiteScore
5.30
自引率
4.00%
发文量
22
期刊介绍: Journal of Mammary Gland Biology and Neoplasia is the leading Journal in the field of mammary gland biology that provides researchers within and outside the field of mammary gland biology with an integrated source of information pertaining to the development, function, and pathology of the mammary gland and its function. Commencing in 2015, the Journal will begin receiving and publishing a combination of reviews and original, peer-reviewed research. The Journal covers all topics related to the field of mammary gland biology, including mammary development, breast cancer biology, lactation, and milk composition and quality. The environmental, endocrine, nutritional, and molecular factors regulating these processes is covered, including from a comparative biology perspective.
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